Learning To Generalize: Meta-learning For Domain Generalization | Awesome LLM Papers Add your paper to Awesome LLM Papers

Learning To Generalize: Meta-learning For Domain Generalization

da Li, Yongxin Yang, Yi-Zhe Song, Timothy M. Hospedales . Arxiv 2017 – 113 citations

[Paper]   Search on Google Scholar   Search on Semantic Scholar
Reinforcement Learning

Domain shift refers to the well known problem that a model trained in one source domain performs poorly when applied to a target domain with different statistics. {Domain Generalization} (DG) techniques attempt to alleviate this issue by producing models which by design generalize well to novel testing domains. We propose a novel {meta-learning} method for domain generalization. Rather than designing a specific model that is robust to domain shift as in most previous DG work, we propose a model agnostic training procedure for DG. Our algorithm simulates train/test domain shift during training by synthesizing virtual testing domains within each mini-batch. The meta-optimization objective requires that steps to improve training domain performance should also improve testing domain performance. This meta-learning procedure trains models with good generalization ability to novel domains. We evaluate our method and achieve state of the art results on a recent cross-domain image classification benchmark, as well demonstrating its potential on two classic reinforcement learning tasks.

Similar Work